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A Hybrid Memetic Framework for Coverage Optimization in Wireless Sensor Networks

机译:用于无线传感器网络覆盖优化的混合模因框架

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One of the critical concerns in wireless sensor networks (WSNs) is the continuous maintenance of sensing coverage. Many particular applications, such as battlefield intrusion detection and object tracking, require a full-coverage at any time, which is typically resolved by adding redundant sensor nodes. With abundant energy, previous studies suggested that the network lifetime can be maximized while maintaining full coverage through organizing sensor nodes into a maximum number of disjoint sets and alternately turning them on. Since the power of sensor nodes is unevenly consumed over time, and early failure of sensor nodes leads to coverage loss, WSNs require dynamic coverage maintenance. Thus, the task of permanently sustaining full coverage is particularly formulated as a hybrid of disjoint set covers and dynamic-coverage-maintenance problems, and both have been proven to be nondeterministic polynomial-complete. In this paper, a hybrid memetic framework for coverage optimization (Hy-MFCO) is presented to cope with the hybrid problem using two major components: 1) a memetic algorithm (MA)-based scheduling strategy and 2) a heuristic recursive algorithm (HRA). First, the MA-based scheduling strategy adopts a dynamic chromosome structure to create disjoint sets, and then the HRA is utilized to compensate the loss of coverage by awaking some of the hibernated nodes in local regions when a disjoint set fails to maintain full coverage. The results obtained from real-world experiments using a WSN test-bed and computer simulations indicate that the proposed Hy-MFCO is able to maximize sensing coverage while achieving energy efficiency at the same time. Moreover, the results also show that the Hy-MFCO significantly outperforms the existing methods with respect to coverage preservation and energy efficiency.
机译:无线传感器网络(WSN)的关键问题之一是不断保持传感范围。许多特定的应用程序,例如战场入侵检测和物体跟踪,随时需要完全覆盖,通常可以通过添加冗余传感器节点来解决。凭借丰富的能量,以前的研究表明,可以通过将传感器节点组织成最大数量的不相交集并交替打开它们来最大化网络寿命,同时保持完全覆盖。由于传感器节点的功率会随着时间的推移而消耗不均,并且传感器节点的早期故障会导致覆盖范围丢失,因此WSN需要动态维护范围。因此,永久保持全覆盖的任务特别是用不相交集覆盖和动态覆盖维护问题的混合来表述的,并且都被证明是不确定的多项式完全的。本文提出了一种用于覆盖范围优化的混合模因框架(Hy-MFCO),以使用两个主要组件来应对混合问题:1)基于模因算法(MA)的调度策略和2)启发式递归算法(HRA) )。首先,基于MA的调度策略采用动态染色体结构来创建不相交集,然后,当不相交集无法保持完全覆盖时,通过唤醒局部区域中的某些休眠节点,利用HRA来补偿覆盖范围的损失。使用WSN测试床和计算机模拟从真实世界实验中获得的结果表明,所提出的Hy-MFCO能够最大化感测覆盖范围,同时实现能源效率。此外,结果还表明,在覆盖范围保持和能源效率方面,Hy-MFCO明显优于现有方法。

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